Nonlinear Dynamical Control Systems Henk Nijmeijer • Arjan Van Der Schaft

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Nonlinear Dynamical Control Systems Henk Nijmeijer • Arjan Van Der Schaft Nonlinear Dynamical Control Systems Henk Nijmeijer • Arjan van der Schaft Nonlinear Dynamical Control Systems 123 Henk Nijmeijer Arjan van der Schaft Eindhoven University of Technology University of Groningen Eindhoven Groningen The Netherlands The Netherlands ISBN 978-0-387-97234-3 ISBN 978-1-4757-2101-0 (eBook) DOI 10.1007/978-1-4757-2101-0 © Springer Science+Business Media New York 1990, Corrected printing 2016 This work is subject to copyright. All rights are reserved by the Publisher, whether the whole or part of the material is concerned, specifically the rights of translation, reprinting, reuse of illustrations, recitation, broadcasting, reproduction on microfilms or in any other physical way, and transmission or information storage and retrieval, electronic adaptation, computer software, or by similar or dissimilar methodology now known or hereafter developed. The use of general descriptive names, registered names, trademarks, service marks, etc. in this publication does not imply, even in the absence of a specific statement, that such names are exempt from the relevant protective laws and regulations and therefore free for general use. The publisher, the authors and the editors are safe to assume that the advice and information in this book are believed to be true and accurate at the date of publication. Neither the publisher nor the authors or the editors give a warranty, express or implied, with respect to the material contained herein or for any errors or omissions that may have been made. Printed on acid-free paper This Springer imprint is published by SpringerNature The registered company is Springer Science+Business Media LLC New York Preface This textbook on the differential geometric approach to nonlinear control grew out of a set of lecture notes, which were prepared for a course on nonlinear system theory, given by us for the first time during the fall semester of 1988. The audience consisted mostly of graduate students, taking part in the Dutch national Graduate Program on Systems and Control. The aim of this course is to give a general introduction to modern nonlinear control theory (with an emphasis on the differential geometric approach), as well as to provide students specializing in nonlinear control theory with a firm starting point for doing research in this area. One of our primary objectives was to give a self-contained treatment of all the topics to be included. Since the literature on nonlinear geometric control theory is rapidly expanding this forced us to limit ourselves in the choice of topics. The task of selecting topics was further aggravated by the continual shift in emphasis in the nonlinear control literature over the last years. Therefore, we decided to concentrate on some rather solid and clear-cut achievements of modern nonlinear control, which can be expected to be of remaining interest in the near future. Needless to say, there is also a personal bias in the topics we have finally selected. Furthermore, it was impossible not to be influenced by the trendsetting book “Nonlinear Control Systems: an Introduction”, written by A. Isidori in 1985 (Lecture Notes in Control and Information Sciences, 72, Springer). A second main goal was to illustrate the theory presented with examples stem- ming from various fields of application. As a result, Chapter 1 starts with a discus- sion of some characteristic examples of nonlinear control systems, which will serve as illustration throughout the subsequent chapters, besides several other examples. Thirdly, we decided to include a rather extensive and self-contained treatment of the necessary mathematical background on differential geometry. Especially the required theory on Lie brackets, (co-)distributions and Frobenius’ Theorem is cov- ered in detail. However, some rudimentary knowledge about the fundamentals of differential geometry (manifolds, tangent space, vectorfields) will greatly facilitate the reading of the book. Furthermore, the reader is supposed to be familiar with the basic concepts of linear system theory; especially some acquaintance with linear geometric control theory will be very helpful. v vi Preface Modern nonlinear control theory, in particular the differential geometric ap- proach, has emerged during the seventies in a rather successful attempt to deal with basic questions in the state space formulation of nonlinear control systems, including the problems of controllability and observability, and (minimal) realization theory. It was also motivated by optimal control theory, in particular the Maximum Principle and its relation with controllability issues. The theory gained strong impetus at the end of the seventies and beginning of the eighties by the introduction of several new concepts, most of them having as their crucial part nonlinear feedback. Let us illus- trate this with two papers, which can be seen as benchmarks in this development. First, there is the paper by Brockett on “Feedback invariants for nonlinear systems” (Proc. VIIth IFAC World Congress, Helsinki, pp. 1115-1120, 1978), which deals with the basic question to what extent the structure of a nonlinear control system can be changed by (static state) feedback. A direct outgrowth of this paper has been the theory on feedback linearization of nonlinear control systems. Secondly, in the paper “Nonlinear decoupling via feedback: a differential geometric approach” by Isidori, Krener, Gori-Giorgi & Monaco (IEEE Trans. Automat. Control, AC-26, pp. 341-345, 1981) the concept of a controlled invariant distribution is used for vari- ous sorts of decoupling problems (independently, a similar approach was taken by Hirschorn (“(A,B)-invariant distributions and disturbance decoupling of nonlinear systems”, SIAM J. Contr. Optimiz. 19, pp. 1-19, 1981)). It is worth mentioning that the concept of a controlled invariant distribution is a nonlinear generalization of the concept of a controlled invariant subspace, which is the cornerstone in what is usu- ally called linear geometric control theory (see the trendsetting book of Wonham, “Linear Multivariable Control”, Springer, first edition 1974, third edition 1985). In fact, a substantial part of the research on nonlinear control theory in the eighties has been involved with the “translation” to the nonlinear domain of solutions of various feedback synthesis problems obtained in linear geometric control theory. Connected with the concept of (controlled) invariant distributions, the above mentioned IEEE paper also stressed the usefulness of special choices of state space coordinates, in which the system structure becomes more transparent. The search for various kinds of nonlinear normal forms, usually connected to some algorithm such as the nonlin- ear D∗-algorithm, the Hirschorn algorithm or the dynamic extension algorithm, has been another major trend in the eighties. At this moment it is difficult to say what will be the prevailing trends in nonlinear control theory in the near future. Without doubt the feedback stabilization problem, which has recently obtained a strong renewed interest, will be a fruitful area. Also adaptive control of nonlinear systems, or, more modestly, the search for adaptive versions of current nonlinear control schemes is likely going to be very important, as well as digital implementation (discretization) of (continuous-time based) con- trol strategies. Moreover, it seems that nonlinear control theory is at a point in its development where more attention should be paid to the special (physical) structure of some classes of nonlinear control systems, notably in connection with classical notions of passivity, stability and symmetry, and notions stemming from bifurcation theory and dynamical systems. Preface vii The contents of the book are organized as follows: Chapter 1 starts with an exposition of four examples of nonlinear control systems, which will be used as illustration for the theory through the rest of the book. A few generalities concerning the definition of nonlinear control systems in state space form are briefly discussed, and some typical phenomena occurring in nonlinear dif- ferential (or difference) equations are touched upon, in order to put the study of nonlinear control systems also into the perspective of nonlinear dynamics. Chapter 2 provides the necessary differential geometric background for the rest of the book. Section 2.1 deals with some fundamentals of differential geometry, while in Section 2.2 vectorfields, Lie brackets, (co-)distributions and Frobenius’ Theorem are treated in some detail. For the reader’s convenience we have included a quick survey of Section 2.1, as well as a short summary of Section 2.2 containing a list of useful properties and identities. In Chapter 3 some aspects of controllability and observ- ability are treated with an emphasis on nonlinear rank conditions that generalize the well-known Kalman rank conditions for controllability and observability of linear systems, and on the role of invariant distributions in obtaining local decompositions similar to the linear Kalman decompositions. Chapter 4 is concerned with various input-output representations of nonlinear control systems, and thus provides a link with a more input-output oriented approach to nonlinear control systems, without actually going into this. Conditions for invariance of an output under a particular input, which will be crucial for the theory of decoupling in later chapters, are de- rived in the analytic as well as in the smooth case. In Chapter 5 we discuss some problems concerning the transformation
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